Image analysis – Applications – Personnel identification
Reexamination Certificate
2001-05-25
2008-10-14
Mehta, Bhavesh (Department: 2624)
Image analysis
Applications
Personnel identification
C382S224000
Reexamination Certificate
active
07436985
ABSTRACT:
A personal identity authentication process and system use a class specific linear discriminant transformation to test authenticity of a probe face image. A ‘client acceptance’ approach, an ‘imposter rejection’ approach and a ‘fused’ approach are described.
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Mehta Bhavesh
Omniperception Limited
Seth Manav
LandOfFree
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